Native speaker and grammarian pedant read through
authorphila
Fri, 19 Jul 2013 18:13:44 +0100
changeset 592 4d2a833e1552
parent 591 1fe366418088
child 593 de46b18e2385
Native speaker and grammarian pedant read through
data-cube-ucr/index.html
data-cube-ucr/respec-config.js
--- a/data-cube-ucr/index.html	Thu Jul 18 16:24:29 2013 +0100
+++ b/data-cube-ucr/index.html	Fri Jul 19 18:13:44 2013 +0100
@@ -21,7 +21,7 @@
 	<p>Many national, regional and local governments, as well as other
 		organizations in- and outside of the public sector, collect numeric
 		data and aggregate this data into statistics. There is a need to
-		publish these statistics in a standardised, machine-readable way on
+		publish these statistics in a standardized, machine-readable way on
 		the web, so that they can be freely integrated and reused in consuming
 		applications.</p>
 	<p>
@@ -29,7 +29,7 @@
 			Government Linked Data Working Group</a> presents use cases and lessons
 		supporting a recommendation of the RDF Data Cube Vocabulary [<cite><a
 			href="#ref-QB-2013">QB-2013</a></cite>]. We describe case studies of
-		existing deployments of an earlier version of the data cube vocabulary
+		existing deployments of an earlier version of the Data Cube Vocabulary
 		[<cite><a href="#ref-QB-2010">QB-2010</a></cite>] as well as other
 		possible use cases that would benefit from using the vocabulary. In
 		particular, we identify benefits and challenges in using a vocabulary
@@ -52,12 +52,12 @@
 	<h2 id="introduction">Introduction</h2>
 	The aim of this document is to present concrete use cases and lessons
 	for a vocabulary to publish statistics as Linked Data. An earlier
-	version of the data cube vocabulary [<cite><a
+	version of the Data Cube Vocabulary [<cite><a
 		href="#ref-QB-2010">QB-2010</a></cite>] has existed for some time and has
 	proven applicable in <a href="http://wiki.planet-data.eu/web/Datasets">several
 		deployments</a>. The <a href="http://www.w3.org/2011/gld/">W3C
 		Government Linked Data Working Group</a> intends to transform the data
-	cube vocabulary into a W3C recommendation of the RDF Data Cube
+	cube vocabulary into a W3C Recommendation of the RDF Data Cube
 	Vocabulary [<cite><a href="#ref-QB-2013">QB-2013</a></cite>]. In this
 	document, we describe use cases that would benefit from using the
 	vocabulary. In particular, we identify possible benefits and challenges
@@ -66,21 +66,21 @@
 	associated tools or services complementing the vocabulary.
 
 	<p>The rest of this document is structured as follows. We will
-		first give a short introduction to modelling statistics. Then, we will
+		first give a short introduction to modeling statistics. Then, we will
 		describe use cases that have been derived from existing deployments or
-		from feedback to the earlier version of the data cube vocabulary. In
+		from feedback to the earlier version of the Data Cube Vocabulary. In
 		particular, we describe possible benefits and challenges of use cases.
 		Afterwards, we will describe lessons derived from the use cases.</p>
 
-	<p>We use the term "data cube vocabulary" throughout the document
+	<p>We use the term "Data Cube Vocabulary" throughout the document
 		when referring to the vocabulary.</p>
 
 	<p>In the following, we describe the challenge of authoring an RDF
 		vocabulary for publishing statistics as Linked Data. Describing
-		statistics - collected and aggregated numeric data - is challenging
+		statistics &mdash; collected and aggregated numeric data &mdash; is challenging
 		for the following reasons:</p>
 	<ul>
-		<li>Representing statistics requires more complex modelling as
+		<li>Representing statistics requires more complex modeling as
 			discussed by Martin Fowler [<cite><a href="#ref-FOWLER97">FOWLER97</a></cite>]:
 			Recording a statistic simply as an attribute to an object (e.g., the
 			fact that a person weighs 185 pounds) fails to represent important
@@ -88,12 +88,12 @@
 			statistic is modeled as a distinguishable object, an observation.
 		</li>
 		<li>The object describes an observation of a value, e.g., a
-			numeric value (e.g., 185) in case of a measurement and a categorical
-			value (e.g., "blood group A") in case of a categorical observation.</li>
+			numeric value (e.g., 185) in the case of a measurement and a categorical
+			value (e.g., "blood group A") in the case of a categorical observation.</li>
 		<li>To allow correct interpretation of the value, the observation
 			needs to be further described by "dimensions" such as the specific
 			phenomenon, e.g., "weight", the time the observation is valid, e.g.,
-			"January 2013" or a location the observation was done, e.g., "New
+			"January 2013" or a location where the observation was made, e.g., "New
 			York".</li>
 		<li>To further improve interpretation of the value, attributes
 			such as presentational information, e.g., a series title "COINS 2010
@@ -101,15 +101,15 @@
 			unit of measure "miles" can be given to observations.</li>
 		<li>Given background information, e.g., arithmetical and
 			comparative operations, humans and machines can appropriately
-			visualize such observations or have conversions between different
+			visualize such observations or perform conversions between different
 			quantities.</li>
 	</ul>
 
 	<p>
 		The Statistical Data and Metadata eXchange [<cite><a
-			href="#ref-SDMX">SDMX</a></cite>] - the ISO standard for exchanging and
-		sharing statistical data and metadata among organizations - uses a
-		"multidimensional model" to meet the above challenges in modelling
+			href="#ref-SDMX">SDMX</a></cite>] &mdash; the ISO standard for exchanging and
+		sharing statistical data and metadata among organizations &mdash; uses a
+		"multidimensional model" to meet the above challenges in modeling
 		statistics. It can describe statistics as observations. Observations
 		exhibit values (Measures) that depend on dimensions (Members of
 		Dimensions). Since the SDMX standard has proven applicable in many
@@ -127,9 +127,7 @@
 		Statistics comprise statistical data.
 	</p>
 
-	<p>
-
-		The basic structure of
+	<p>The basic structure of
 		<dfn>statistical data</dfn>
 		is a multidimensional table (also called a data cube) [<cite><a
 			href="#ref-SDMX">SDMX</a></cite>], i.e., a set of observed values organized
@@ -148,7 +146,7 @@
 
 	<p>
 		<dfn>Source data</dfn>
-		is data from datastores such as relational databases or spreadsheets
+		is data from data stores such as relational databases or spreadsheets
 		that acts as a source for the Linked Data publishing process.
 	</p>
 
@@ -204,24 +202,24 @@
 	</p>
 	<p>Since we have adopted the multidimensional model that underlies
 		SDMX, we also adopt the "Web Dissemination Use Case" which is the
-		prime use case for SDMX since it is an increasing popular use of SDMX
+		prime use case for SDMX since it is an increasingly popular use of SDMX
 		and enables organizations to build a self-updating dissemination
 		system.</p>
 	<p>The Web Dissemination Use Case contains three actors, a
-		structural metadata web service (registry) that collects metadata
-		about statistical data in a registration fashion, a data web service
+		structural metadata Web service (registry) that collects metadata
+		about statistical data in a registration fashion, a data Web service
 		(publisher) that publishes statistical data and its metadata as
-		registered in the structural metadata web service, and a data
+		registered in the structural metadata Web service, and a data
 		consumption application (consumer) that first discovers data from the
 		registry, then queries data from the corresponding publisher of
-		selected data, and then visualises the data.</p>
+		selected data, and then visualizes the data.</p>
 
 	<h4>Benefits</h4>
 	<ul>
 		<li>A structural metadata source (registry) can collect metadata
 			about statistical data.</li>
 
-		<li>A data web service (publisher) can register statistical data
+		<li>A data Web service (publisher) can register statistical data
 			in a registry, and can provide statistical data from a database and
 			metadata from a metadata repository for consumers. For that, the
 			publisher creates database tables, and loads statistical data in a
@@ -235,19 +233,19 @@
 			database as well as metadata repository and return the statistical
 			data and metadata.</li>
 
-		<li>The consumer can visualise the returned statistical data and
+		<li>The consumer can visualize the returned statistical data and
 			metadata.</li>
 	</ul>
 
 	<h4>Challenges</h4>
 	<ul>
 		<li>This use case is too abstract. The SDMX Web Dissemination Use
-			Case can be concretised by several sub-use cases, detailed in the
+			Case can be concretized by several sub-use cases, detailed in the
 			following sections.</li>
 		<li>In particular, this use case requires a recommended way to
 			advertise published statistical datasets, which supports the
 			following lesson: <a
-			href="#Thereshouldbearecommendedwaytocommunicatetheavailabilityofpublishedstatisticaldatatoexternalpartiesandtoallowautomaticdiscoveryofstatisticaldata">Publishers
+			href="#pubGuidance">Publishers
 				may need guidance in communicating the availability of published
 				statistical data to external parties and to allow automatic
 				discovery of statistical data</a>.
@@ -261,19 +259,19 @@
 		Information System (COINS)</h3>
 	<p>
 		<span style="font-size: 10pt">(This use case has been
-			summarised from Ian Dickinson et al. [<cite><a
+			summarized from Ian Dickinson et al. [<cite><a
 				href="#ref-COINS">COINS</a></cite>])
 		</span>
 	</p>
 	<p>More and more organizations want to publish statistics on the
-		web, for reasons such as increasing transparency and trust. Although
+		Web, for reasons such as increasing transparency and trust. Although,
 		in the ideal case, published data can be understood by both humans and
 		machines, data often is simply published as CSV, PDF, XSL etc.,
 		lacking elaborate metadata, which makes free usage and analysis
 		difficult.</p>
 	<p>
 		Therefore, the goal in this scenario is to use a machine-readable and
-		application-independent description of common statistics with use of
+		application-independent description of common statistics, expressed using 
 		open standards, to foster usage and innovation on the published data.
 		In the "COINS as Linked Data" project [<cite><a
 			href="#ref-COINS">COINS</a></cite>], the Combined Online Information System
@@ -282,7 +280,7 @@
 			href="http://www.hm-treasury.gov.uk/psr_coins_data.htm">HM
 			Treasury</a>, the principal custodian of financial data for the UK
 		government, releases previously restricted financial information about
-		government spendings.
+		government spending.
 	</p>
 
 	<p>The COINS data has a hypercube structure. It describes financial
@@ -296,12 +294,12 @@
 	<p>The published COINS datasets cover expenditure related to five
 		different years (2005–06 to 2009–10). The actual COINS database at HM
 		Treasury is updated daily. In principle at least, multiple snapshots
-		of the COINS data could be released through the year.</p>
+		of the COINS data could be released throughout the year.</p>
 	<p>The actual data and its hypercube structure are to be
 		represented separately so that an application first can examine the
 		structure before deciding to download the actual data, i.e., the
-		transactions. The hypercube structure also defines for each dimension
-		and attribute a range of permitted values that are to be represented.</p>
+		transactions. The hypercube structure also defines, for each dimension
+		and attribute, a range of permitted values that are to be represented.</p>
 	<p>An access or query interface to the COINS data, e.g., via a
 		SPARQL endpoint or the linked data API, is planned. Queries that are
 		expected to be interesting are: "spending for one department", "total
@@ -313,50 +311,50 @@
 		publishing COINS as Linked Data are threefold:</p>
 
 	<ul>
-		<li>Using open standard representation makes it easier to work
-			with the data with available technologies and promises innovative
-			third-party tools and usages</li>
-		<li>Individual transactions and groups of transactions are given
-			an identity, and so can be referenced by web address (URL), to allow
+		<li>using an open standard representation makes it easier to work
+			with the data using available technologies and promises innovative
+			third-party tools and usages;</li>
+		<li>individual transactions and groups of transactions are given
+			an identity, and so can be referenced by Web address (URL), to allow
 			them to be discussed, annotated, or listed as source data for
-			articles or visualizations</li>
-		<li>Cross-links between linked-data datasets allow for much
-			richer exploration of related datasets</li>
+			articles or visualizations;</li>
+		<li>cross-links between linked-data datasets allow for much
+			richer exploration of related datasets.</li>
 	</ul>
 
 	<h4>Challenges</h4>
 
 	<p>The COINS use case leads to the following challenges:</p>
 	<ul>
-		<li>Although not originally intended, the data cube vocabulary
+		<li>Although not originally intended, the Data Cube Vocabulary
 			could be successfully used for publishing financial data, not just
 			statistics. This has also been shown by the <a
-			href="http://data.gov.uk/resources/payments">Payment Ontology</a>.
+			href="http://data.gov.uk/resources/payments">Payments Ontology</a>.
 		</li>
-		<li>Also, the publisher favours a representation that is both as
+		<li>Also, the publisher favors a representation that is both as
 			self-descriptive as possible, i.e., others can link to and download
 			fully-described individual transactions, and as compact as possible,
 			i.e., information is not unnecessarily repeated. This challenge
 			supports lesson: <a
-			href="#Thereshouldbecriteriaforwell-formednessandassumptionsconsumerscanmakeaboutpublisheddata">Publishers
+			href="#criteriaForWell">Publishers
 				and consumers may need guidance in checking and making use of
 				well-formedness of published data using data cube</a>.
 		</li>
 		<li>Moreover, the publisher is thinking about the possible
 			benefit of publishing slices of the data, e.g., datasets that fix all
 			dimensions but the time dimension. For instance, such slices could be
-			particularly interesting for visualisations or comments. However,
-			depending on the number of Dimensions, the number of possible slices
+			particularly interesting for visualizations or comments. However,
+			depending on the number of dimensions, the number of possible slices
 			can become large which makes it difficult to semi-automatically
 			select all interesting slices. This challenge supports lesson: <a
-			href="#Vocabularyshouldclarifytheuseofsubsetsofobservations">Publishers
+			href="#clarify">Publishers
 				may need more guidance in creating and managing slices or arbitrary
 				groups of observations</a>.
 		</li>
 		<li>An important benefit of linked data is that we are able to
 			annotate data, at a fine-grained level of detail, to record
-			information about the data itself. This includes where it came from –
-			the provenance of the data – but could include annotations from
+			information about the data itself. This includes where it came from &mdash;
+			the provenance of the data &mdash; but could include annotations from
 			reviewers, links to other useful resources, etc. Being able to trust
 			that data to be correct and reliable is a central value for
 			government-published data, so recording provenance is a key
@@ -369,16 +367,16 @@
 			additional supplementary information which they derive from the data,
 			for example by cross-linking to other datasets. This challenge
 			supports lesson: <a
-			href="#Thereshouldbearecommendedwayofdeclaringrelationsbetweencubes">Publishers
+			href="#declaringRel">Publishers
 				may need guidance in making transparent the pre-processing of
 				aggregate statistics</a>.
 		</li>
 		<li>A challenge also is the size of the data, especially since it
 			is updated regularly. Five data files already contain between 3.3 and
 			4.9 million rows of data. This challenge supports lesson: <a
-			href="#Thereshouldbemechanismsandrecommendationsregardingpublicationandconsumptionoflargeamountsofstatisticaldata">Publishers
+			href="#mechRec">Publishers
 				and consumers may need more guidance in efficiently processing data
-				using the data cube vocabulary</a>.
+				using the Data Cube Vocabulary</a>.
 		</li>
 	</ul>
 
@@ -408,12 +406,11 @@
 		Linked Data.
 	</p>
 
-	<p>Those excel sheets contain single spreadsheets with several
+	<p>Those Excel sheets contain single spreadsheets with several
 		multidimensional data tables, having a name and notes, as well as
 		column values, row values, and cell values.</p>
 
-	<p>
-		Another concrete example is the <a
+	<p>Another concrete example is the <a
 			href="http://ontowiki.net/Projects/Stats2RDF?show_comments=1">Stats2RDF</a>
 		project that intends to publish biomedical statistical data that is
 		represented as Excel sheets. Here, Excel files are first translated
@@ -430,20 +427,20 @@
 			and cell values.</li>
 		<li>All context and so all meaning of the measurement point is
 			expressed by means of dimensions. The pure number is the star of an
-			ego-network of attributes or dimensions. In a RDF representation it
+			ego-network of attributes or dimensions. In an RDF representation it
 			is then easily possible to define hierarchical relationships between
 			the dimensions (that can be exemplified further) as well as mapping
 			different attributes across different value points. This way a
 			harmonization among variables is performed around the measurement
 			points themselves.</li>
-		<li>Novel visualisation of census data</li>
+		<li>Novel visualization of census data</li>
 		<li>Possible integration with provenance vocabularies, e.g.,
 			PROV-O, for tracking of harmonization steps</li>
 		<li>In historical research, until now, harmonization across
 			datasets is performed by hand, and in subsequent iterations of a
 			database: it is very hard to trace back the provenance of decisions
 			made during the harmonization procedure. Publishing the census data
-			as Linked Data may allow (semi-)automatical harmonization.</li>
+			as Linked Data may allow (semi-)automatic harmonization.</li>
 	</ul>
 	<h4>Challenges</h4>
 
@@ -451,16 +448,16 @@
 		<li>Semi-structured information, e.g., notes about lineage of
 			data cells, may not be possible to be formalized. This supports
 			lesson <a
-			href="#Thereshouldbearecommendedwayofdeclaringrelationsbetweencubes">Publishers
+			href="#declaringRel">Publishers
 				may need guidance in making transparent the pre-processing of
 				aggregate statistics</a>
 		</li>
 		<li>Combining Data Cube with SKOS [<cite><a
 				href="#ref-skos">SKOS</a></cite>] to allow for cross-location and
 			cross-time historical analysis, supporting lesson <a
-			href="#Vocabularyshouldrecommendamechanismtosupporthierarchicalcodelists">Publishers
+			href="#heirarchic">Publishers
 				may need more guidance to decide which representation of hierarchies
-				is most suitable for their use case</a>
+				is most suitable for their use case</a>.
 		</li>
 		<li>These challenges may seem to be particular to the field of
 			historical research, but in fact apply to government information at
@@ -469,21 +466,21 @@
 			bodies, scattered across multiple levels, jurisdictions and areas.
 			Publishing government information in a consistent, integrated manner
 			requires exactly the type of harmonization required in this use case.</li>
-		<li>Define a mapping between Excel and the data cube vocabulary.
+		<li>Define a mapping between Excel and the Data Cube Vocabulary.
 			Excel spreadsheets are representative for other common representation
 			formats for statistics such as CSV, XBRL, ARFF, which supports lesson
 			<a
-			href="#publishers-may-need-guidance-in-conversions-from-common-statistical-representations-such-as-csv-excel-arff-etc.">Publishers
+			href="#excelCSV">Publishers
 				may need guidance in conversions from common statistical
 				representations such as CSV, Excel, ARFF etc.</a>
 		</li>
-		<li>Excel sheets provide much flexibility in arranging
+		<li>Excel sheets provide a great deal of flexibility in arranging
 			information. It may be necessary to limit this flexibility to allow
 			automatic transformation.</li>
 		<li>There may be many spreadsheets which supports lesson <a
-			href="#Thereshouldbemechanismsandrecommendationsregardingpublicationandconsumptionoflargeamountsofstatisticaldata">Publishers
+			href="#mechRec">Publishers
 				and consumers may need more guidance in efficiently processing data
-				using the data cube vocabulary</a></li>
+				using the Data Cube Vocabulary</a></li>
 
 	</ul>
 
@@ -524,24 +521,19 @@
 ex:obs5
   sdmx:refArea &lt;northernireland&gt;;
   sdmx:refPeriod "2011";
-  ex:population "2" .
-	
-	
-	</pre>
+  ex:population "2" .	</pre>
 
 	<p>
 		We are looking for the best way (in the context of the RDF/Data
-		Cube/SDMX approach) to express that the values for the
-		England/Scotland/Wales/ Northern Ireland ought to add up to the value
+		Cube/SDMX approach) to express that the values for
+		England, Scotland, Wales &amp; Northern Ireland ought to add up to the value
 		for the UK and constitute a more detailed breakdown of the overall UK
-		figure? Since we might also have population figures for France,
-		Germany, EU27, it is not as simple as just taking a
-		<code>qb:Slice</code>
-		where you fix the time period and the measure.
+		figure. Since we might also have population figures for France,
+		Germany, EU28 etc., it is not as simple as just taking a
+		<code>qb:Slice</code> where you fix the time period and the measure.
 	</p>
 
-	<p>
-		Similarly, Etcheverry and Vaisman [<cite><a href="#ref-QB4OLAP">QB4OLAP</a></cite>]
+	<p>Similarly, Etcheverry and Vaisman [<cite><a href="#ref-QB4OLAP">QB4OLAP</a></cite>]
 		present the use case to publish household data from <a
 			href="http://statswales.wales.gov.uk/index.htm">StatsWales</a> and <a
 			href="http://opendatacommunities.org/doc/dataset/housing/household-projections">Open
@@ -574,7 +566,7 @@
 			engines to automatically derive statistics on higher aggregation
 			levels.</li>
 		<li>Vice versa, representing further aggregated datasets would
-			allow to answer queries with a simple lookup instead of computations
+			allow the answering of queries with a simple lookup instead of computations
 			which may be more time consuming or require specific features of the
 			query engine (e.g., SPARQL 1.1).</li>
 	</ul>
@@ -587,15 +579,15 @@
 			functions. Again, this use case does not simply need a selection (or
 			"dice" in OLAP context) where one fixes the time period dimension.
 			This supports lesson <a
-			href="#Thereshouldbearecommendedmechanismtoallowforpublicationofaggregateswhichcrossmultipledimensions">Publishers
+			href="#aggregations">Publishers
 				may need guidance in how to represent common analytical operations
 				such as Slice, Dice, Rollup on data cubes</a>
 		</li>
-		<li>Literals that are used in observations, cannot be used as
-			subjects in triples. So, no hierarchies can be defined that would for
-			example link integer years via skos:narrower to months. This supports
+		<li>Literals that are used in observations cannot be used as
+			subjects in triples. So no hierarchies can be defined that would, for
+			example, link integer years via skos:narrower to months. This supports
 			lesson <a
-			href="#Vocabularyshouldrecommendamechanismtosupporthierarchicalcodelists">Publishers
+			href="#heirarchic">Publishers
 				may need more guidance to decide which representation of hierarchies
 				is most suitable for their use case</a>.
 		</li>
@@ -623,16 +615,16 @@
 		designated as bathing waters where people routinely enter the water.
 		The Environment Agency monitors and reports on the quality of the
 		water at these bathing waters.</p>
-	<p>The Environement Agency's data can be thought of as structured
+	<p>The Environment Agency's data can be thought of as structured
 		in 3 groups:</p>
 	<ul>
-		<li>There is basic reference data describing the bathing waters
-			and sampling points</li>
-		<li>There is a data set "Annual Compliance Assessment Dataset"
+		<li>basic reference data describing the bathing waters
+			and sampling points;</li>
+		<li>"Annual Compliance Assessment Dataset"
 			giving the rating for each bathing water for each year it has been
-			monitored</li>
-		<li>There is a data set "In-Season Sample Assessment Dataset"
-			giving the detailed weekly sampling results for each bathing water</li>
+			monitored;</li>
+		<li>"In-Season Sample Assessment Dataset"
+			giving the detailed weekly sampling results for each bathing water.</li>
 	</ul>
 	<p>The most important dimensions of the data are bathing water,
 		sampling point, and compliance classification.</p>
@@ -640,14 +632,14 @@
 	<h4>Benefits</h4>
 	<ul>
 		<li>The bathing-water dataset (documentation) is structured
-			around the use of the data cube vocabulary and fronted by a linked
+			around the use of the Data Cube Vocabulary and fronted by a linked
 			data API configuration which makes the data available for re-use in
 			additional formats such as JSON and CSV.</li>
 		<li>Publishing bathing-water quality information in this way will
 			1) enable the Environment Agency to meet the needs of its many data
-			consumers in a uniform way rather than through diverse pairwise
+			consumers in a uniform way rather than through diverse pair-wise
 			arrangements 2) preempt requests for specific data and 3) enable a
-			larger community of web and mobile application developers and
+			larger community of Web and mobile application developers and
 			value-added information aggregators to use and re-use bathing-water
 			quality information sourced by the environment agency.</li>
 	</ul>
@@ -658,7 +650,7 @@
 			whether there was an abnormal weather exception.</li>
 		<li>Relevant slices of both datasets are to be created, which
 			supports lesson <a
-			href="#Vocabularyshouldclarifytheuseofsubsetsofobservations">Publishers
+			href="#clarify">Publishers
 				may need more guidance in creating and managing slices or arbitrary
 				groups of observations</a>:
 			<ul>
@@ -675,13 +667,13 @@
 			</ul>
 		</li>
 		<li>In this use case, observation and measurement data is to be
-			published which per se is not aggregated statistics. The <a
+			published which <i>per se</i> is not aggregated statistics. The <a
 			href="http://purl.oclc.org/NET/ssnx/ssn">Semantic Sensor Network
 				ontology</a> (SSN) already provides a way to publish sensor information.
 			SSN data provides statistical Linked Data and grounds its data to the
 			domain, e.g., sensors that collect observations (e.g., sensors
 			measuring average of temperature over location and time). Still, this
-			case study has shown that the data cube vocabulary may be a useful
+			case study has shown that the Data Cube Vocabulary may be a useful
 			alternative and can be successfully used for observation and
 			measurement data, as well as statistical data.
 		</li>
@@ -727,9 +719,9 @@
 		ISO19156 <em>"Geographic information — Observations and
 			measurements"</em> (O&amp;M) is regarded as important. Thus, this supports
 		lesson <a
-			href="#VocabularyshoulddefinerelationshiptoISO19156ObservationsMeasurements">Modelers
+			href="#relToSO19156">Modelers
 			using ISO19156 - Observations &amp; Measurements may need
-			clarification regarding the relationship to the data cube vocabulary</a>.
+			clarification regarding the relationship to the Data Cube Vocabulary</a>.
 	</p>
 	<b>Solution in this case study:</b>
 	<p>O&amp;M provides a data model for an Observation with associated
@@ -773,9 +765,9 @@
 		are thus a key consideration and the apparent verbosity of RDF in
 		general, and Data Cube specifically, was a concern. This supports
 		lesson <a
-			href="#Thereshouldbemechanismsandrecommendationsregardingpublicationandconsumptionoflargeamountsofstatisticaldata">
+			href="#mechRec">
 			Publishers and consumers may need more guidance in efficiently
-			processing data using the data cube vocabulary</a>.
+			processing data using the Data Cube Vocabulary</a>.
 	</p>
 	<b>Solution in this case study:</b>
 	<p>Regarding bandwidth costs then the key is not raw data volume
@@ -794,7 +786,7 @@
 				Linked Data Wrapper</a> and <a
 			href="http://eurostat.linked-statistics.org/">Linked Statistics
 				Eurostat Data</a>, both deployments for publishing Eurostat SDMX as
-			Linked Data using the draft version of the data cube vocabulary)
+			Linked Data using the draft version of the Data Cube Vocabulary)
 		</span>
 	</p>
 
@@ -813,13 +805,13 @@
 		As one of the main adopters of SDMX, <a
 			href="http://epp.eurostat.ec.europa.eu/">Eurostat</a> publishes large
 		amounts of European statistics coming from a data warehouse as SDMX
-		and other formats on the web. Eurostat also provides an interface to
+		and other formats on the Web. Eurostat also provides an interface to
 		browse and explore the datasets. However, linking such
 		multidimensional data to related data sets and concepts would require
-		downloading of interesting datasets and manual integration.The goal
+		downloading of interesting datasets and manual integration. The goal
 		here is to improve integration with other datasets; Eurostat data
-		should be published on the web in a machine-readable format, possible
-		to be linked with other datasets, and possible to be freely consumed
+		should be published on the Web in a machine-readable format, possibly
+		to be linked with other datasets, and possibly to be freely consumed
 		by applications. Both <a href="http://estatwrap.ontologycentral.com/">Eurostat
 			Linked Data Wrapper</a> and <a
 			href="http://eurostat.linked-statistics.org/">Linked Statistics
@@ -831,7 +823,7 @@
 			href="http://epp.eurostat.ec.europa.eu/NavTree_prod/everybody/BulkDownloadListing?sort=1&file=table_of_contents_en.xml">TOC
 			of published datasets</a> as well as a feed of modified and new datasets.
 
-		Eurostat provides a list of used codelists, i.e., <a
+		Eurostat provides a list of used code lists, i.e., <a
 			href="http://epp.eurostat.ec.europa.eu/NavTree_prod/everybody/BulkDownloadListing?sort=1&dir=dic">range
 			of permitted dimension values</a>. Any Eurostat dataset contains a
 		varying set of dimensions (e.g., date, geo, obs_status, sex, unit) as
@@ -852,10 +844,10 @@
 		<li>Allows useful queries to the data, e.g., comparison of
 			statistical indicators across EU countries.</li>
 
-		<li>Allows to attach contextual information to statistics during
+		<li>Allows one to attach contextual information to statistics during
 			the interpretation process.</li>
 
-		<li>Allows to reuse single observations from the data.</li>
+		<li>Allows one to reuse single observations from the data.</li>
 
 		<li>Linking to information from other data sources, e.g., for
 			geo-spatial dimension.</li>
@@ -874,28 +866,28 @@
 			when converted into RDF require more than 350GB of disk space
 			yielding a dataspace with some 8 billion triples. This supports
 			lesson <a
-			href="#Thereshouldbemechanismsandrecommendationsregardingpublicationandconsumptionoflargeamountsofstatisticaldata">
+			href="#mechRec">
 				Publishers and consumers may need more guidance in efficiently
-				processing data using the data cube vocabulary.</a>
+				processing data using the Data Cube Vocabulary.</a>
 		</li>
 
 		<li>In the Eurostat Linked Data Wrapper, there is a timeout for
 			transforming SDMX to Linked Data, since Google App Engine is used.
 			Mechanisms to reduce the amount of data that needs to be translated
 			would be needed, again supporting lesson <a
-			href="#Thereshouldbemechanismsandrecommendationsregardingpublicationandconsumptionoflargeamountsofstatisticaldata">
+			href="#mechRec">
 				Publishers and consumers may need more guidance in efficiently
-				processing data using the data cube vocabulary.</a>
+				processing data using the Data Cube Vocabulary.</a>
 		</li>
 
-		<li>Provide a useful interface for browsing and visualising the
+		<li>Provide a useful interface for browsing and visualizing the
 			data. One problem is that the data sets have too high dimensionality
-			to be displayed directly. Instead, one could visualise slices of time
+			to be displayed directly. Instead, one could visualize slices of time
 			series data. However, for that, one would need to either fix most
 			other dimensions (e.g., sex) or aggregate over them (e.g., via
 			average). The selection of useful slices from the large number of
 			possible slices is a challenge. This supports lesson <a
-			href="#Vocabularyshouldclarifytheuseofsubsetsofobservations">
+			href="#clarify">
 				Publishers may need more guidance in creating and managing slices or
 				arbitrary groups of observations</a>.
 		</li>
@@ -905,9 +897,9 @@
 
 		<li>The Eurostat SDMX as Linked Data use case provides data on a
 			gender level and on a level aggregating over the gender level. This
-			suggests to have time lines on data aggregating over the gender
-			dimension, supporting lesson <a
-			href="#Thereshouldbearecommendedmechanismtoallowforpublicationofaggregateswhichcrossmultipledimensions">
+			suggests a need to have time lines on data aggregating over the gender
+			dimension, supporting the lesson: <a
+			href="#aggregations">
 				Publishers may need guidance in how to represent common analytical
 				operations such as Slice, Dice, Rollup on data cubes</a>.
 		</li>
@@ -915,12 +907,12 @@
 		<li>Updates to the data
 
 			<ul>
-				<li>Eurostat - Linked Data pulls in changes from the original
+				<li>Eurostat Linked Data pulls in changes from the original
 					Eurostat dataset on a weekly basis and the conversion process runs
 					every Saturday at noon taking into account new datasets along with
 					updates to existing datasets.</li>
-				<li>Eurostat Linked Data Wrapper on-the-fly translates Eurostat
-					datasets into RDF so that always the most current data is used. The
+				<li>Eurostat Linked Data Wrapper translates Eurostat
+					datasets into RDF on the fly so that the most current data is always used. The
 					problem is only to point users towards the URIs of Eurostat
 					datasets: Estatwrap provides a feed of modified and new <a
 					href="http://estatwrap.ontologycentral.com/feed.rdf">datasets</a>.
@@ -938,23 +930,23 @@
 		<li>Query interface</li>
 
 		<ul>
-			<li>Eurostat - Linked Data provides SPARQL endpoint for the
+			<li>Eurostat Linked Data provides a SPARQL endpoint for the
 				metadata (not the observations).</li>
 			<li>Eurostat Linked Data Wrapper provides resolvable URIs to
 				datasets (ds) that return all observations of the dataset. Also,
 				every dataset serves the URI of its data structure definition (dsd).
 				The dsd URI returns all RDF describing the dataset. Separating
 				information resources for dataset and data structure definition
-				allows for example to first gather the dsd and only for actual query
-				execution resolve the ds.</li>
+				allows one, for example, to first gather the dsd and only for actual query
+				execution to resolve the ds.</li>
 		</ul>
 
-		<li>Browsing and visualising interface:
+		<li>Browsing and visualizing interface:
 			<ul>
 				<li>Eurostat Linked Data Wrapper provides for each dataset an
-					HTML page showing a JavaScript-based visualisation of the data.
+					HTML page showing a JavaScript-based visualization of the data.
 					This also supports lesson <a
-					href="#Consumersmayneedguidanceinconversionsintoformats">
+					href="#consumers">
 						Consumers may need guidance in conversions into formats that can
 						easily be displayed and further investigated in tools such as
 						Google Data Explorer, R, Weka etc.</a>
@@ -964,17 +956,19 @@
 
 		</li>
 		<li>One possible application would run validation checks over
-			Eurostat data. However, the data cube vocabulary is to publish
+			Eurostat data. However, the Data Cube Vocabulary is designed to publish
 			statistical data as-is and is not intended to represent information
 			for validation (similar to business rules).</li>
 		<li>An application could try to automatically match elements of
 			the geo-spatial dimension to elements of other data sources, e.g.,
 			NUTS, GADM. In Eurostat Linked Data wrapper this is done by simple
 			URI guessing from external data sources. Automatic linking datasets
-			or linking datasets with metadata is not part of data cube
-			vocabulary.</li>
-		<li>The draft version of the data cube vocabulary builds upon SDMX Standards Version 2.0. A newer version of SDMX, SDMX Standards, Version 2.1, is available which might be used by Eurostat in the future which supports lesson <a
-					href="#there-is-a-putative-requirement-to-update-to-sdmx-2.1-if-there-are-specific-use-cases-that-demand-it">
+			or linking datasets with metadata is not part of Data Cube
+			Vocabulary.</li>
+		<li>The draft version of the Data Cube Vocabulary builds upon SDMX Standards Version 2.0. 
+A newer version of SDMX, SDMX Standards, Version 2.1, is available which might be used by 
+Eurostat in the future which supports lesson <a
+					href="#putative">
 						There is a putative requirement to update to SDMX 2.1 if there are specific use cases that demand it</a></li>
 	</ul>
 
@@ -993,16 +987,16 @@
 
 	<p>The goal of this use case is to describe provenance,
 		transformations, and versioning around statistical data, so that the
-		history of statistics published on the web becomes clear. This may
+		history of statistics published on the Web becomes clear. This may
 		also relate to the issue of having relationships between datasets
 		published.</p>
 
 	<p>
 		A concrete example is given by Freitas et al. [<cite><a
 			href="#ref-COGS">COGS</a></cite>], where transformations on financial
-		datasets, e.g., addition of derived measures, conversion of units,
+		datasets, e.g., the addition of derived measures, conversion of units,
 		aggregations, OLAP operations, and enrichment of statistical data are
-		executed on statistical data before showing them in a web-based
+		executed on statistical data before showing them in a Web-based
 		report.
 	</p>
 
@@ -1014,20 +1008,20 @@
 	<h4>Benefits</h4>
 
 	<p>Making transparent the transformation a dataset has been exposed
-		to and thereby increasing trust in the data.</p>
+		to increases trust in the data.</p>
 
 	<h4>Challenges</h4>
 
 	<ul>
 		<li>Operations on statistical data result in new statistical
-			data, depending on the operation. For instance, in terms of Data
-			Cube, operations such as slice, dice, roll-up, drill-down will result
-			in new Data Cubes. This may require representing general
+			data, depending on the operation. For instance, in terms of the Data
+			Cube Vocabulary, operations such as slice, dice, roll-up, drill-down will result
+			in new data cubes. This may require representing general
 			relationships between cubes (as discussed in the <a
 			href="http://groups.google.com/group/publishing-statistical-data/browse_thread/thread/75762788de10de95">publishing-statistical-data
 				mailing list</a>).
 		</li>
-		<li>Should Data Cube support explicit declaration of such
+		<li>Should the Data Cube Vocabulary support explicit declaration of such
 			relationships either between separated qb:DataSets or between
 			measures with a single <code>qb:DataSet</code> (e.g., <code>ex:populationCount</code>
 			and <code>ex:populationPercent</code>)?
@@ -1036,17 +1030,17 @@
 			like DENOM or allow expression of arbitrary mathematical relations?</li>
 
 		<li>This use case opens up questions regarding versioning of
-			statistical Linked Data. Thus, there is a possible relation to <a
+			statistical Linked Data. Thus, there is a possible relation to the <a
 			href="http://www.w3.org/2011/gld/wiki/Best_Practices_Discussion_Summary#Versioning">Versioning</a>
 			part of GLD Best Practices Document, where it is specified how to
 			publish data which has multiple versions.
 		</li>
 		<li>In this use case, the <a
 			href="http://sites.google.com/site/cogsvocab/">COGS</a> vocabulary [<cite><a
-				href="#ref-COGS">COGS</a></cite>] has shown to complement the data cube
-			vocabulary w.r.t. representing ETL pipelines processing statistics.
+				href="#ref-COGS">COGS</a></cite>] has shown to complement the Data Cube
+			Vocabulary with respect to representing ETL pipelines processing statistics.
 			This supports lesson <a
-			href="#Thereshouldbearecommendedwayofdeclaringrelationsbetweencubes">
+			href="#declaringRel">
 				Publishers may need guidance in making transparent the
 				pre-processing of aggregate statistics</a>.
 		</li>
@@ -1054,7 +1048,7 @@
 
 	</section> <section>
 	<h3 id="Simplechartvisualisationsofpublishedstatisticaldata">Consumer
-		Case Study: Simple chart visualisations of (integrated) published
+		Case Study: Simple chart visualizations of (integrated) published
 		climate sensor data</h3>
 	<p>
 		<span style="font-size: 10pt">(Use case taken from <a
@@ -1068,7 +1062,7 @@
 		visualization on top of these formats using Excel, Tableau,
 		RapidMiner, Rattle, Weka etc.</p>
 	<p>This use case shall demonstrate how statistical data published
-		on the web can be with few effort visualized inside a webpage, without
+		on the Web can be visualized inside a webpage with little effort and without
 		using commercial or highly-complex tools.</p>
 	<p>
 		An example scenario is environmental research done within the <a
@@ -1077,8 +1071,8 @@
 		climate in the Lower Jordan Valley) shall be visualized for scientists
 		and decision makers. Statistics should also be possible to be
 		integrated and displayed together. The data is available as XML files
-		on the web which are re-published as Linked Data using the data cube
-		vocabulary. On a separate website, specific parts of the data shall be
+		on the Web which are re-published as Linked Data using the Data Cube
+		Vocabulary. On a separate website, specific parts of the data shall be
 		queried and visualized in simple charts, e.g., line diagrams.
 	</p>
 
@@ -1102,27 +1096,27 @@
 			src="./figures/pivot_analysis_measurements.PNG"></img>
 	</p>
 	<h4>Benefits</h4>
-	<p>Easy, flexible and powerful visualisations of published
+	<p>Easy, flexible and powerful visualizations of published
 		statistical data.</p>
 
 	<h4>Challenges</h4>
 	<ul>
 		<li>The difficulties lay in structuring the data appropriately so
-			that the specific information can be queried. This supports lesson <a
-			href="#Thereshouldbecriteriaforwell-formednessandassumptionsconsumerscanmakeaboutpublisheddata">
+			that the specific information can be queried. This supports lesson: <a
+			href="#criteriaForWell">
 				Publishers and consumers may need guidance in checking and making
 				use of well-formedness of published data using data cube</a>.
 		</li>
-		<li>Also, data shall be published with having potential
+		<li>Also, data shall be published with potential
 			integration in mind. Therefore, e.g., units of measurements need to
 			be represented.</li>
 		<li>Integration becomes much more difficult if publishers use
-			different measures, dimensions.</li>
+			different measures/dimensions.</li>
 	</ul>
 
 	</section> <section>
-	<h3 id="VisualisingpublishedstatisticaldatainGooglePublicDataExplorer">Consumer
-		Use Case: Visualising published statistical data in Google Public Data
+	<h3 id="consumer-use-case-visualising-published-statistical-data-in-google-public-data-explorer">Consumer
+		Use Case: Visualizing published statistical data in Google Public Data
 		Explorer</h3>
 	<p>
 		<span style="font-size: 10pt">(Use case taken from <a
@@ -1143,14 +1137,14 @@
 		that shall be visualized and explored.
 	</p>
 	<p>In this use case, the goal is to take statistical data published
-		as Linked Data re-using the data cube vocabulary and to transform it
+		as Linked Data re-using the Data Cube Vocabulary and to transform it
 		into DSPL for visualization and exploration using GPDE with as few
 		effort as possible.</p>
 	<p>For instance, Eurostat data about Unemployment rate downloaded
-		from the web as shown in the following figure:</p>
+		from the Web as shown in the following figure:</p>
 
 	<p class="caption">Figure 3: An interactive chart in GPDE for
-		visualising Eurostat data described with DSPL</p>
+		visualizing Eurostat data described with DSPL</p>
 	<p align="center">
 		<img
 			alt="An interactive chart in GPDE for visualising Eurostat data in the DSPL"
@@ -1165,29 +1159,28 @@
 
 	<h4>Benefits</h4>
 	<ul>
-		<li>Easy to visualise statistics published using the data cube
-			vocabulary.</li>
+		<li>Easy to visualize statistics published using the Data Cube Vocabulary.</li>
 		<li>There could be a process of first transforming data into RDF
 			for further preprocessing and integration and then of loading it into
-			GPDE for visualisation.</li>
+			GPDE for visualization.</li>
 		<li>Linked Data could provide the way to automatically load data
-			from a data source whereas GPDE is only for visualisation.</li>
+			from a data source whereas GPDE is only for visualization.</li>
 	</ul>
 	<h4>Challenges</h4>
 	<ul>
 		<li>The technical challenges for the consumer here lay in knowing
 			where to download what data and how to get it transformed into DSPL
 			without knowing the data. This supports lesson <a
-			href="#Thereshouldbecriteriaforwell-formednessandassumptionsconsumerscanmakeaboutpublisheddata">
+			href="#criteriaForWell">
 				Publishers and consumers may need guidance in checking and making
 				use of well-formedness of published data using data cube</a>.
 		</li>
-		<li>Define a mapping between data cube and DSPL. DSPL is
-			representative for using statistical data published on the web in
+		<li>Define a mapping between Data Cube and DSPL. DSPL is
+			representative for using statistical data published on the Web in
 			available tools for analysis. Similar tools that may additionally be
 			covered are: Weka (arff data format), Tableau, SPSS, STATA, PC-Axis
 			etc. This supports lesson <a
-			href="#Consumersmayneedguidanceinconversionsintoformats">
+			href="#consumers">
 				Consumers may need guidance in conversions into formats that can
 				easily be displayed and further investigated in tools such as Google
 				Data Explorer, R, Weka etc.</a>.
@@ -1196,7 +1189,7 @@
 
 	</section> <section>
 	<h3 id="AnalysingpublishedstatisticaldatawithcommonOLAPsystems">Consumer
-		Case Study: Analysing published financial (XBRL) data from the SEC
+		Case Study: Analyzing published financial (XBRL) data from the SEC
 		with common OLAP systems</h3>
 	<p>
 		<span style="font-size: 10pt">(Use case taken from <a
@@ -1216,7 +1209,7 @@
 	<p>OLAP systems that first use ETL pipelines to
 		Extract-Load-Transform relevant data for efficient storage and queries
 		in a data warehouse and then allows interfaces to issue OLAP queries
-		on the data are commonly used in industry to analyse statistical data
+		on the data are commonly used in industry to analyze statistical data
 		on a regular basis.</p>
 
 	<p>
@@ -1226,7 +1219,7 @@
 	</p>
 
 	<p>For that a multidimensional model of the data needs to be
-		generated. A multidimensional model consists of facts summarised in
+		generated. A multidimensional model consists of facts summarized in
 		data cubes. Facts exhibit measures depending on members of dimensions.
 		Members of dimensions can be further structured along hierarchies of
 		levels.</p>
@@ -1234,15 +1227,15 @@
 	<p>
 		An example scenario of this use case is the Financial Information
 		Observation System (FIOS) [<cite><a href="#ref-FIOS">FIOS</a></cite>],
-		where XBRL data provided by the SEC on the web is re-published as
+		where XBRL data provided by the SEC on the Web is re-published as
 		Linked Data and made possible to explore and analyse by stakeholders
 		in a web-based OLAP client Saiku.
 	</p>
 
 	<p>The following figure shows an example of using FIOS. Here, for
-		three different companies, cost of goods sold as disclosed in XBRL
-		documents are analysed. As cell values either the number of
-		disclosures or - if only one available - the actual number in USD is
+		three different companies, the cost of goods sold as disclosed in XBRL
+		documents are analyzed. As cell values either the number of
+		disclosures or &mdash; if only one available &mdash; the actual number in USD is
 		given:</p>
 
 
@@ -1256,7 +1249,7 @@
 	<h4>Benefits</h4>
 
 	<ul>
-		<li>Data Cube model well-known to many people in industry.</li>
+		<li>Data cube model well-known to many people in industry.</li>
 		<li>OLAP operations cover typical business requirements, e.g.,
 			slice, dice, drill-down and can be issued via intuitive, interactive,
 			explorative, fast OLAP frontends.</li>
@@ -1265,17 +1258,17 @@
 
 	<h4>Challenges</h4>
 	<ul>
-		<li>Define a mapping between XBRL and the data cube vocabulary.
+		<li>Define a mapping between XBRL and the Data Cube Vocabulary.
 			XBRL is representative for other common representation formats for
 			statistics such as CSV, Excel, ARFF, which supports lesson <a
-			href="#publishers-may-need-guidance-in-conversions-from-common-statistical-representations-such-as-csv-excel-arff-etc.">Publishers
+			href="#excelCSV">Publishers
 				may need guidance in conversions from common statistical
 				representations such as CSV, Excel, ARFF etc.</a>
 		</li>
 		<li>ETL pipeline needs to automatically populate a data
 			warehouse. Common OLAP systems use relational databases with a star
 			schema. This supports lesson <a
-			href="#Thereshouldbecriteriaforwell-formednessandassumptionsconsumerscanmakeaboutpublisheddata">
+			href="#criteriaForWell">
 				Publishers and consumers may need guidance in checking and making
 				use of well-formedness of published data using data cube</a>.
 		</li>
@@ -1283,21 +1276,21 @@
 			the structure of data (metadata queries), and queries for actual
 			aggregated values (OLAP operations).</li>
 		<li>Define a mapping between OLAP operations and operations on
-			data using the data cube vocabulary. This supports lesson <a
-			href="#Thereshouldbearecommendedmechanismtoallowforpublicationofaggregateswhichcrossmultipledimensions">
+			data using the Data Cube Vocabulary. This supports lesson <a
+			href="#aggregations">
 				Publishers may need guidance in how to represent common analytical
 				operations such as Slice, Dice, Rollup on data cubes</a>.
 		</li>
-		<li>Another problem lies in defining Data Cubes without greater
+		<li>Another problem lies in defining data cubes without greater
 			insight in the data beforehand. Thus, OLAP systems have to cater for
 			possibly missing information (e.g., the aggregation function or a
 			human readable label).</li>
 		<li>Depending on the expressivity of the OLAP queries (e.g.,
 			aggregation functions, hierarchies, ordering), performance plays an
 			important role. This supports lesson <a
-			href="#Thereshouldbemechanismsandrecommendationsregardingpublicationandconsumptionoflargeamountsofstatisticaldata">
+			href="#mechRec">
 				Publishers and consumers may need more guidance in efficiently
-				processing data using the data cube vocabulary</a>.
+				processing data using the Data Cube Vocabulary</a>.
 		</li>
 	</ul>
 
@@ -1333,13 +1326,13 @@
 		A concrete use case is the structured collection of <a
 			href="http://wiki.planet-data.eu/web/Datasets">RDF Data Cube
 			Vocabulary datasets</a> in the PlanetData Wiki. This list is supposed to
-		describe statistical datasets on a higher level - for easy discovery
-		and selection - and to provide a useful overview of RDF Data Cube
+		describe statistical datasets on a higher level &mdash; for easy discovery
+		and selection &mdash; and to provide a useful overview of RDF Data Cube
 		deployments in the Linked Data cloud.
 	</p>
 	<h4>Benefits</h4>
 	<ul>
-		<li>Datasets may automatically be discovered by web or data
+		<li>Datasets may automatically be discovered by Web or data
 			crawlers.</li>
 		<li>Potential consumers will be pointed to published statistics
 			in search engines if searching for related information.</li>
@@ -1351,22 +1344,22 @@
 
 	<h4>Challenges</h4>
 	<ul>
-		<li>Define mapping between DCAT and data cube vocabulary. The <a
+		<li>Define mapping between DCAT and Data Cube Vocabulary. The <a
 			href="http://www.w3.org/TR/vocab-dcat/">Data Catalog vocabulary</a>
 			(DCAT) is strongly related to this use case since it may complement
 			the standard vocabulary for representing statistics in the case of
 			registering data in a data catalog. This supports lesson <a
-			href="#Thereshouldbemechanismsandrecommendationsregardingpublicationandconsumptionoflargeamountsofstatisticaldata">Publishers
+			href="#mechRec">Publishers
 				may need guidance in communicating the availability of published
 				statistical data to external parties and to allow automatic
 				discovery of statistical data</a>
 		</li>
-		<li>Define mapping between data cube vocabulary and data catalog
+		<li>Define mapping between the Data Cube Vocabulary and data catalog
 			descriptions. If data catalogs contain statistics, they do not expose
 			those using Linked Data but for instance using CSV, HTML (e.g.,
 			Pangea) or XML (e.g., DDI - Data Documentation Initiative).
 			Therefore, it could also be a use case to publish such data using the
-			data cube vocabulary.</li>
+			Data Cube Vocabulary.</li>
 	</ul>
 
 	</section> </section>
@@ -1379,7 +1372,7 @@
 		well as associated tools or services complementing the vocabulary.</p>
 
 	<section>
-	<h3 id="VocabularyshouldbuildupontheSDMXinformationmodel">There is
+	<h3 id="putative">There is
 		a putative requirement to update to SDMX 2.1 if there are specific use
 		cases that demand it</h3>
 	<p>
@@ -1401,7 +1394,7 @@
 				Case Study: Eurostat SDMX as Linked Data</a></li>
 	</ul>
 	</section> <section>
-	<h3 id="Vocabularyshouldclarifytheuseofsubsetsofobservations">Publishers
+	<h3 id="clarify">Publishers
 		may need more guidance in creating and managing slices or arbitrary
 		groups of observations</h3>
 	<p>There should be a consensus on the issue of flattening or
@@ -1437,7 +1430,7 @@
 	</ul>
 	</section> <section>
 	<h3
-		id="Vocabularyshouldrecommendamechanismtosupporthierarchicalcodelists">Publishers
+		id="heirarchic">Publishers
 		may need more guidance to decide which representation of hierarchies
 		is most suitable for their use case</h3>
 	<p>
@@ -1506,11 +1499,11 @@
 	</ul>
 	</section> <section>
 	<h3
-		id="VocabularyshoulddefinerelationshiptoISO19156ObservationsMeasurements">Modelers
+		id="relToSO19156">Modelers
 		using ISO19156 - Observations &amp; Measurements may need clarification
-		regarding the relationship to the data cube vocabulary</h3>
+		regarding the relationship to the Data Cube Vocabulary</h3>
 	<p>An number of organizations, particularly in the Climate and
-		Meteorological area already have some commitment to the OGC
+		Meteorological area, already have some commitment to the OGC
 		"Observations and Measurements" (O&amp;M) logical data model, also
 		published as ISO 19156. Are there any statements about compatibility
 		and interoperability between O&amp;M and Data Cube that can be made to
@@ -1536,7 +1529,7 @@
 	</ul>
 	</section> <section>
 	<h3
-		id="Thereshouldbearecommendedmechanismtoallowforpublicationofaggregateswhichcrossmultipledimensions">Publishers
+		id="aggregations">Publishers
 		may need guidance in how to represent common analytical operations
 		such as Slice, Dice, Rollup on data cubes</h3>
 
@@ -1554,11 +1547,11 @@
 				Case Study: Eurostat SDMX as Linked Data</a></li>
 		<li><a
 			href="#consumer-case-study-analysing-published-financial-xbrl-data-from-the-sec-with-common-olap-systems">Consumer
-				Case Study: Analysing published financial (XBRL) data from the SEC
+				Case Study: Analyzing published financial (XBRL) data from the SEC
 				with common OLAP systems</a></li>
 	</ul>
 	</section> <section>
-	<h3 id="Thereshouldbearecommendedwayofdeclaringrelationsbetweencubes">Publishers
+	<h3 id="declaringRel">Publishers
 		may need guidance in making transparent the pre-processing of
 		aggregate statistics</h3>
 	<p>Background information:</p>
@@ -1586,7 +1579,7 @@
 	</ul>
 	</section> <section>
 	<h3
-		id="Thereshouldbecriteriaforwell-formednessandassumptionsconsumerscanmakeaboutpublisheddata">Publishers
+		id="criteriaForWell">Publishers
 		and consumers may need guidance in checking and making use of
 		well-formedness of published data using data cube</h3>
 
@@ -1602,7 +1595,7 @@
 				Information System (COINS)</a></li>
 		<li><a
 			href="#consumer-case-study-simple-chart-visualisations-of-integrated-published-climate-sensor-data">Consumer
-				Case Study: Simple chart visualisations of (integrated) published
+				Case Study: Simple chart visualizations of (integrated) published
 				climate sensor data</a></li>
 		<li><a
 			href="#consumer-use-case-visualising-published-statistical-data-in-google-public-data-explorer">Consumer
@@ -1610,12 +1603,12 @@
 				Data Explorer</a></li>
 		<li><a
 			href="#consumer-case-study-analysing-published-financial-xbrl-data-from-the-sec-with-common-olap-systems">Consumer
-				Case Study: Analysing published financial (XBRL) data from the SEC
+				Case Study: Analyzing published financial (XBRL) data from the SEC
 				with common OLAP systems</a></li>
 	</ul>
 	</section> <section>
 	<h3
-		id="Publishersmayneedguidanceinconversionsfromcommonstatisticalrepresentations">Publishers
+		id="excelCSV">Publishers
 		may need guidance in conversions from common statistical
 		representations such as CSV, Excel, ARFF etc.</h3>
 
@@ -1631,11 +1624,11 @@
 				census data as Linked Data</a></li>
 		<li><a
 			href="#consumer-case-study-analysing-published-financial-xbrl-data-from-the-sec-with-common-olap-systems">Consumer
-				Case Study: Analysing published financial (XBRL) data from the SEC
+				Case Study: Analyzing published financial (XBRL) data from the SEC
 				with common OLAP systems</a></li>
 	</ul>
 	</section> <section>
-	<h3 id="Consumersmayneedguidanceinconversionsintoformats">Consumers
+	<h3 id="consumers">Consumers
 		may need guidance in conversions into formats that can easily be
 		displayed and further investigated in tools such as Google Data
 		Explorer, R, Weka etc.</h3>
@@ -1655,9 +1648,9 @@
 	</ul>
 	</section> <section>
 	<h3
-		id="Thereshouldbemechanismsandrecommendationsregardingpublicationandconsumptionoflargeamountsofstatisticaldata">Publishers
+		id="mechRec">Publishers
 		and consumers may need more guidance in efficiently processing data
-		using the data cube vocabulary</h3>
+		using the Data Cube Vocabulary</h3>
 	<p>Background information:</p>
 	<ul>
 		<li>Related issue regarding abbreviations <a
@@ -1682,12 +1675,12 @@
 				Case Study: Eurostat SDMX as Linked Data</a></li>
 		<li><a
 			href="#consumer-case-study-analysing-published-financial-xbrl-data-from-the-sec-with-common-olap-systems">Consumer
-				Case Study: Analysing published financial (XBRL) data from the SEC
+				Case Study: Analyzing published financial (XBRL) data from the SEC
 				with common OLAP systems</a></li>
 	</ul>
 	</section> <section>
 	<h3
-		id="Thereshouldbearecommendedwaytocommunicatetheavailabilityofpublishedstatisticaldatatoexternalpartiesandtoallowautomaticdiscoveryofstatisticaldata">Publishers
+		id="pubGuidance">Publishers
 		may need guidance in communicating the availability of published
 		statistical data to external parties and to allow automatic discovery
 		of statistical data</h3>
--- a/data-cube-ucr/respec-config.js	Thu Jul 18 16:24:29 2013 +0100
+++ b/data-cube-ucr/respec-config.js	Fri Jul 19 18:13:44 2013 +0100
@@ -7,7 +7,7 @@
     shortName:            "data-cube-ucr",
     //subtitle:             "",
     // if you wish the publication date to be other than today, set this
-    publishDate:  "2013-02-27",
+    publishDate:  "2013-07-19",
 
     // if there is a previously published draft, uncomment this and set its YYYY-MM-DD date
     // and its maturity status